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Evaluating the use of machine learning in the assessment of joint angle using a single inertial sensor

机译:使用单个惯性传感器评估使用机器学习的使用

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Introduction Joint angle measurement is an important objective marker in rehabilitation. Inertial measurement units may provide an accurate and reliable method of joint angle assessment. The objective of this study was to assess whether a single sensor with the application of machine learning algorithms could accurately measure hip and knee joint angle, and investigate the effect of inertial measurement unit orientation algorithms and person-specific variables on accuracy. Methods Fourteen healthy participants completed eight rehabilitation exercises with kinematic data captured by a 3D motion capture system, used as the reference standard, and a wearable inertial measurement unit. Joint angle was calculated from the single inertial measurement unit using four machine learning models, and was compared to the reference standard to evaluate accuracy. Results Average root-mean-squared error for the best performing algorithms across all exercises was 4.81° (SD?=?1.89). The use of an inertial measurement unit orientation algorithm as a pre-processing step improved accuracy; however, the addition of person-specific variables increased error with average RMSE 4.99° (SD?=?1.83°). Conclusions Hip and knee joint angle can be measured with a good degree of accuracy from a single inertial measurement unit using machine learning. This offers the ability to monitor and record dynamic joint angle with a single sensor outside of the clinic.
机译:引言接头角度测量是康复的重要目标标志。惯性测量单元可以提供准确可靠的关节角度评估方法。本研究的目的是评估单个传感器是否能够应用机器学习算法,可以准确地测量髋关节和膝关节角度,并研究惯性测量单位方向算法和人特定变量对精度的影响。方法使用3D运动捕获系统捕获的运动数据,完成了八个健康参与者,用作参考标准和可穿戴惯性测量单元,完成了八个康复练习。使用四台机器学习模型从单个惯性测量单元计算联合角度,并与参考标准进行比较以评估准确性。结果所有练习中最佳性能算法的平均根均方误差为4.81°(SD?=?1.89)。使用惯性测量单元方向算法作为预处理步骤提高了精度;但是,在平均RMSE 4.99°(SDα= 1.83°)的情况下,增加了特定的人特定变量。结论使用机器学习的单个惯性测量单元,可以以良好的精度测量髋关节和膝关节角。这提供了通过诊所外的单个传感器监控和记录动态关节角度的能力。

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